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Statistical modeling of the fuel flow rate of GA piston engine aircraft using flight operational data

机译:使用飞行运行数据对GA活塞发动机飞机的燃油流量进行统计建模

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The United States has the largest and most diverse general aviation (GA) community in the world, with more than 220,000 aircraft, flying almost 23 million hours annually. Accurate and economic estimating the exhaust emissions of general aviation will effectively support the practice of mitigating the environmental impacts from general aviation. Fuel flow rate in each phase of the Landing and Takeoff Cycle is one of the necessary factors recommended by the International Civil Aviation Organization to be used to estimate the exhaust emissions. This paper explores statistical models of predicting the fuel flow rate of piston engine aircraft using general aviation flight operational data, including the aircraft altitude, the ground speed, and the vertical speed. A machine learning technique is applied to adapt the variability of flight operational data due to flexible operations of general aviation and random errors in flight data. The Classification and Regression Trees (CART) and the Smoothing Spline ANOVA (SS-ANOVA) are adopted as the modeling approaches. The modeling results are compared and interpreted from the standpoint of general aviation phases of flight in the Landing and Takeoff Cycle. Both models demonstrate good accuracy in predicting the fuel flow rate. The CART model provides intuitive outputs by the phases of flight, and is more robust to flight data outliers. The SS-ANOVA model is relatively more accurate in predicting the fuel flow rate, and is better at explaining the interaction between variables. A robust fuel flow rate prediction model of predicting the fuel flow rate of piston engine aircraft is believed to be practical and economic for GA exhaust emissions estimation. (C) 2017 Elsevier Ltd. All rights reserved.
机译:美国是世界上最大和最多样化的通用航空(GA)社区,拥有22万多架飞机,每年飞行近2300万小时。准确,经济地估算通用航空的废气排放量将有效地支持减轻通用航空对环境的影响的做法。着陆和起飞周期每个阶段的燃油流速是国际民航组织建议用于估算废气排放的必要因素之一。本文探讨了使用通用航空飞行运行数据(包括飞机高度,地面速度和垂直速度)预测活塞式发动机飞机燃油流量的统计模型。由于通用航空的灵活操作和飞行数据中的随机错误,因此应用了机器学习技术来适应飞行操作数据的可变性。采用分类和回归树(CART)和平滑样条ANOVA(SS-ANOVA)作为建模方法。从着陆和起飞周期的一般航空飞行阶段的角度对建模结果进行比较和解释。两种模型在预测燃油流量方面均显示出良好的准确性。 CART模型按飞行阶段提供直观的输出,并且对飞行数据离群值更可靠。 SS-ANOVA模型在预测燃料流量方面相对更准确,并且在解释变量之间的相互作用方面更好。据信,用于预测活塞发动机飞机的燃料流量的稳健的燃料流量预测模型对于GA废气排放估算是实用且经济的。 (C)2017 Elsevier Ltd.保留所有权利。

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